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dc.contributor.advisorSuhardiyanto, Herry
dc.contributor.advisorSupriyanto
dc.contributor.authorSilfiya, Anisya Dika
dc.date.accessioned2024-12-05T12:06:46Z
dc.date.available2024-12-05T12:06:46Z
dc.date.issued2024
dc.identifier.urihttp://repository.ipb.ac.id/handle/123456789/160080
dc.description.abstractPertanian dalam lingkungan terkendali seperti hidroponik menawarkan suatu solusi alternatif untuk tantangan ketahanan pangan global, terutama di tengah perubahan iklim dan berkurangnya lahan subur. Penelitian ini bertujuan untuk mengetahui pengaruh jenis pencahayaan terhadap pertumbuhan selada romaine (Lactuca sativa var. longifolia) dan kale Curly (Brassica oleracea var. sabellica) di plant factory menggunakan white LED, grow LED merah-biru, dan grow LED kombinasi. Metode yang digunakan meliputi uji ANOVA dan analisis lanjut DMRT untuk mengevaluasi perbedaan pertumbuhan kedua jenis tanaman. Selain itu, model Artificial Neural Network (ANN) dengan algoritma backpropagation dikembangkan untuk memprediksi pertumbuhan tanaman berdasarkan parameter lingkungan dan kondisi tanaman. Hasil penelitian menunjukkan bahwa jenis pencahayaan berpengaruh signifikan terhadap parameter pertumbuhan seperti jumlah daun, luas daun, dan bobot akhir tanaman. Grow LED merah-biru memberikan hasil terbaik dengan bobot akhir selada romaine mencapai 79,01 gram dan curly kale 37,19 gram. Model ANN yang dikembangkan berhasil memprediksi pertumbuhan tanaman dengan nilai R² sebesar 0,9913 dan RMSE sebesar 2,0579 untuk selada romaine, serta R² sebesar 0,9918 dan RMSE sebesar 0,6541 untuk curly kale, menunjukkan hubungan erat antara parameter lingkungan dan pertumbuhan tanaman. Penelitian ini mengindikasikan bahwa pemilihan pencahayaan yang tepat dapat meningkatkan efisiensi produksi dalam sistem pertanian lingkungan terkendali, memberikan dasar kuat untuk optimasi budidaya tanaman hidroponik.
dc.description.abstractAgriculture in a controlled environment, such as hydroponics, offers an alternative solution to global food security challenges, especially amid climate change and reducing arable land. This study aims to determine the effect of lighting type on the growth of Romaine lettuce (Lactuca sativa var. longifolia) and curly kale (Brassica oleracea var. sabellica) in a plant factory using white LED, red-blue LED grow, and combined LED grow. The methods used include ANOVA test and DMRT further analysis to evaluate the difference in growth of the two types of plants. In addition, an Artificial Neural Network (ANN) model with a backpropagation algorithm was developed to predict plant growth based on environmental parameters and plant conditions. The results showed that the lighting type significantly affected growth parameters such as number of leaves, leaf area, and final plant weight. The red-blue LED growth gave the best results, with the final weight of Romaine lettuce reaching 79,01 grams and curly kale at 37,19 grams. The ANN model thrived predicted plant growth with R² values of 0.9913 and RMSE of 2,0579 for Romaine lettuce and R² of 0,9918 and RMSE of 0,6541 for curly kale, indicating a close relationship between environmental parameters and plant growth. This study suggested that proper lighting selection can improve production efficiency in controlled environment farming systems, providing a solid basis for optimizing hydroponic crop cultivation.
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dc.language.isoid
dc.publisherIPB Universityid
dc.titlePemodelan Pertumbuhan Tanaman Selada dan Kale Berdasarkan Pengaruh Jenis Pencahayaan dalam Plant Factory Menggunakan Artificial Neural Networkid
dc.title.alternativeModeling the Growth of Lettuce and Kale Plants Based on the Effect of Lighting Type in a Plant Factory Using Artificial Neural Network
dc.typeSkripsi
dc.subject.keywordANNid
dc.subject.keywordcurly kaleid
dc.subject.keywordlighting typeid
dc.subject.keywordplant factoryid
dc.subject.keywordromaine lettuceid


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